Fueling the growth of AI services worldwide, NVIDIA today launched an AI data center platform that delivers the industry's most advanced inference acceleration for voice, video, image and recommendation services. The NVIDIA TensorRT Hyperscale Inference Platform features NVIDIA Tesla T4 GPUs based on the company's breakthrough NVIDIA Turing architecture and a comprehensive set of new inference software.

Delivering the fastest performance with lower latency for end-to-end applications, the platform enables hyperscale data centers to offer new services, such as enhanced natural language interactions and direct answers to search queries rather than a list of possible results. "Our customers are racing toward a future where every product and service will be touched and improved by AI," said Ian Buck, vice president and general manager of Accelerated Business at NVIDIA. "The NVIDIA TensorRT Hyperscale Platform has been built to bring this to reality - faster and more efficiently than had been previously thought possible."

Every day, massive data centers process billions of voice queries, translations, images, videos, recommendations and social media interactions. Each of these applications requires a different type of neural network residing on the server where the processing takes place.

To optimize the data center for maximum throughput and server utilization, the NVIDIA TensorRT Hyperscale Platform includes both real-time inference software and Tesla T4 GPUs, which process queries up to 40x faster than CPUs alone.

NVIDIA estimates that the AI inference industry is poised to grow in the next five years into a $20 billion market.

Featuring 320 Turing Tensor Cores and 2,560 CUDA cores, this new GPU provides breakthrough performance with flexible, multi-precision capabilities, from FP32 to FP16 to INT8, as well as INT4. Packaged in an energy-efficient, 75-watt, small PCIe form factor that easily fits into most servers, it offers 65 teraflops of peak performance for FP16, 130 teraflops for INT8 and 260 teraflops for INT4.

NVIDIA TensorRT inference server - This containerized microservice software enables applications to use AI models in data center production. Freely available from the NVIDIA GPU Cloud container registry, it maximizes data center throughput and GPU utilization, supports all popular AI models and frameworks, and integrates with Kubernetes and Docker.

Supported by Technology Leaders Worldwide
Support for NVIDIA's new inference platform comes from leading consumer and business technology companies around the world.

"We are working hard at Microsoft to deliver the most innovative AI-powered services to our customers," said Jordi Ribas, corporate vice president for Bing and AI Products at Microsoft. "Using NVIDIA GPUs in real-time inference workloads has improved Bing's advanced search offerings, enabling us to reduce object detection latency for images. We look forward to working with NVIDIA's next-generation inference hardware and software to expand the way people benefit from AI products and services."

More information, including details on how to request early access to T4 GPUs on Google Cloud Platform, is available here.

dditional companies, including all major server manufacturers, voicing support for the NVIDIA TensorRT Hyperscale Platform include:

"Cisco's UCS portfolio delivers policy-driven, GPU-accelerated systems and solutions to power every phase of the AI lifecycle. With the NVIDIA Tesla T4 GPU based on the NVIDIA Turing architecture, Cisco customers will have access to the most efficient accelerator for AI inference workloads - gaining insights faster and accelerating time to action."
- Kaustubh Das, vice president of product management, Data Center Group, Cisco

"Dell EMC is focused on helping customers transform their IT while benefiting from advancements such as artificial intelligence. As the world's leading provider of server systems, Dell EMC continues to enhance the PowerEdge server portfolio to help our customers ultimately achieve their goals. Our close collaboration with NVIDIA and historical adoption of the latest GPU accelerators available from their Tesla portfolio play a vital role in helping our customers stay ahead of the curve in AI training and inference."
- Ravi Pendekanti, senior vice president of product management and marketing, Servers & Infrastructure Systems, Dell EMC

"At HPE, we are committed to driving intelligence at the edge for faster insight and improved experiences. With the NVIDIA Tesla T4 GPU, based on the NVIDIA Turing architecture, we are continuing to modernize and accelerate the data center to enable inference at the edge."
- Bill Mannel, vice president and general manager, HPC and AI Group, Hewlett Packard Enterprise

"IBM Cognitive Systems is able to deliver 4x faster deep learning training times as a result of a co-optimized hardware and software on a simplified AI platform with PowerAI, our deep learning training and inference software, and IBM Power Systems AC922 accelerated servers. We have a history of partnership and innovation with NVIDIA, and together we co-developed the industry's only CPU-to-GPU NVIDIA NVLink connection on IBM Power processors, and we are excited to explore the new NVIDIA T4 GPU accelerator to extend this state of the art leadership for inference workloads."
- Steve Sibley, vice president of Power Systems Offering Management, IBM

"We are excited to see NVIDIA bring GPU inference to Kubernetes with the NVIDIA TensorRT inference server, and look forward to integrating it with Kubeflow to provide users with a simple, portable and scalable way to deploy AI inference across diverse infrastructures."
- David Aronchick, co-founder and product manager of Kubeflow

"Open source cross-framework inference is vital to production deployments of machine learning models. We are excited to see how the NVIDIA TensorRT inference server, which brings a powerful solution for both GPU and CPU inference serving at scale, enables faster deployment of AI applications and improves infrastructure utilization."
- Kash Iftikhar, vice president of product development, Oracle Cloud Infrastructure

"Supermicro is innovating to address the rapidly emerging high-throughput inference market driven by technologies such as 5G, Smart Cities and IOT devices, which are generating huge amounts of data and require real-time decision making. We see the combination of NVIDIA TensorRT and the new Turing architecture-based T4 GPU accelerator as the ideal combination for these new, demanding and latency-sensitive workloads and plan to aggressively leverage them in our GPU system product line."
- Charles Liang, president and CEO, Supermicro

Ya, you just trolled on a scientific jargon that is quite fundamental in neural network AI field.
A neural network AI = training model&algorithm + inferencing algorithm. Now you called the second part BS.

Well let's try this way. No it's not. 1.) it's server part not a pro(quadro) part, 2.) it has more cuda cores than 2070.

Well one thing that it might have been sort of 2060, if full tu106 would have 2560cc(which i doubt because of 3 GPC:s with Turing SM structure is 2304cc, I doubt nvidia would change that). And there is rumors that RTX 2070 is tu106 not a cut down tu104, which would make a rtx 2070 as successor of gtx1060 not gtx0170.

For the sake of toast. Will some of you take a deep breath, maybe engage brain, before instantly become some know it all prick?

BS, to me. Perhaps it is not, to you. Maybe, since everyone here has become sooooo sensitive, I should have phrased it, "No offense to you, or you, or you but, this all seems like a pile of malarkey, to me."

For the sake of toast. Will some of you take a deep breath, maybe engage brain, before instantly become some know it all prick?

BS, to me. Perhaps it is not, to you. Maybe, since everyone here has become sooooo sensitive, I should have phrased it, "No offense to you, or you, or you but, this all seems like a pile of malarkey, to me."